AI Efficiency Shock Hits DRAM Players — But Is the Panic Overdone? $MU $HYNIX

Shernice軒嬣 2000
03-26 07:47

Google has unveiled a new algorithm that significantly reduces memory usage, triggering a broad selloff across memory-related stocks.

$Alphabet(GOOG)$  

$Micron Technology(MU)$  

$SanDisk Corp.(SNDK)$  

$Seagate Technology PLC(STX)$  

$Western Digital(WDC)$  


According to Google, its new TurboQuantlp1 p algorithm can reduce LLM memory requirements by up to 6×, while boosting computation speed by 8×.

However, LLMs rely on two types of memory during operation:

Weights (which store model parameters)

KV Cache (used during inference)

TurboQuant only optimizes the KV Cache, not the model weights.

More importantly, lower memory usage could actually accelerate demand growth, not reduce it.

For example, if 128GB of memory previously handled 10,000 tokens, it can now process 60,000 tokens faster. This enables companies to build more complex and longer-context AI applications.

As a result, instead of cutting purchases, enterprises are likely to buy more chips to support these advanced workloads.

Additionally, models that once required expensive servers may now run on smartphones and PCs, potentially triggering a new wave of memory upgrades rather than reducing demand.

@TigerPM  @TigerStars  @TigerObserver  @Daily_Discussion  @Tiger_comments  

Modified in.03-27 18:12
Micron, SNDK Selloff on TurboQuant: Overreaction or Time to Cool Down?
$Micron Technology (MU), $SanDisk (SNDK), $Western Digital (WDC), and $Seagate Technology (STX) fell 3–6% even as the $Nasdaq-100 rose. The debate: does TurboQuant reduce memory demand — or unlock more usage? Morgan Stanley says it only optimizes inference KV cache, not HBM or training. Others warn efficiency could pressure total capacity needs. With capex surging and expectations high, is this an overreaction — or the first crack in AI memory demand?
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